Machine learning-based artificial nose on a low-cost IoT-hardware
Authors
Abstract
In order to make Internet of things applications easily available and cost-effective, we aim at using low-cost hardware for typical measurement tasks, and in return putting more effort into the signal processing and data analysis. By the example of beverage recognition with a low-cost temperature-modulated gas sensor, we demonstrate the benefits of processing techniques in big data such as feature selection and dimensionality reduction. Specifically, we determine a subset of temperatures that yields good support vector machine classification results and thereby shortens the measurement process.
BibTEX Reference Entry
@inbook{DzGaScBuDaNaGo19, author = {Matthias Dziubany and Marcel Garling and Anke Schmeink and Guido Burger and Guido Dartmann and Stefan Naumann and Klaus-Uwe Gollmer}, title = "Machine learning-based artificial nose on a low-cost IoT-hardware", pages = "239-257", publisher = "Elsevier", series = "Machine Learning for the Internet of Things", editor = "Guido Dartmann;Houbing Song;Anke Schmeink", ISBN = "9780128166376", edition = "1st Edition", month = Oct, year = 2019, hsb = RWTH-2020-04848, }